A noise based novel strategy for faster SNN training
Chunming Jiang, Yilei Zhang

TL;DR
This paper introduces a noise-based training strategy for spiking neural networks that significantly reduces training and inference times while maintaining high accuracy, combining benefits of existing methods.
Contribution
A novel approach that trains a single-step SNN with noise and converts it to a multi-step SNN, improving efficiency and accuracy over traditional methods.
Findings
Reduces training time by 65%-75%.
Achieves over 100 times faster inference speed.
Maintains high accuracy comparable to existing methods.
Abstract
Spiking neural networks (SNNs) are receiving increasing attention due to their low power consumption and strong bio-plausibility. Optimization of SNNs is a challenging task. Two main methods, artificial neural network (ANN)-to-SNN conversion and spike-based backpropagation (BP), both have their advantages and limitations. For ANN-to-SNN conversion, it requires a long inference time to approximate the accuracy of ANN, thus diminishing the benefits of SNN. With spike-based BP, training high-precision SNNs typically consumes dozens of times more computational resources and time than their ANN counterparts. In this paper, we propose a novel SNN training approach that combines the benefits of the two methods. We first train a single-step SNN(T=1) by approximating the neural potential distribution with random noise, then convert the single-step SNN(T=1) to a multi-step SNN(T=N) losslessly.…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Ferroelectric and Negative Capacitance Devices · Neural dynamics and brain function
